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Motion planning based on learning models of pedestrian and driver behaviors

机译:基于行人和驾驶员行为学习模型的运动计划

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Autonomous driving has shown the capability of providing driver convenience and enhancing safety. While introducing autonomous driving into our current traffic system, one significant issue is to make the autonomous vehicle be able to react in the same way as real human drivers. In order to ensure that an autonomous vehicle of the future will perform like human drivers, this paper proposes a vehicle motion planning model, which can represent how drivers control vehicles based on the assessment of traffic environments in the real signalized intersection. The proposed motion planning model comprises functions of pedestrian intention detection, gap detection and vehicle dynamic control. The three functions are constructed based on the analysis of actual data collected from real traffic environments. Finally, this paper demonstrates the performance of the proposed method by comparing the behaviors of our model with the behaviors of real pedestrians and human drivers. The experimental results show that our proposed model can achieve 85% recognition rate for the pedestrian crossing intention. Moreover, the vehicle controlled by the proposed motion planning model and the actual human-driven vehicle are highly similar with respect to the gap acceptance in intersections.
机译:自动驾驶已显示出为驾驶员提供便利和增强安全性的能力。在将无人驾驶技术引入当前的交通系统时,一个重要的问题是使无人驾驶汽车能够以与真正的人类驾驶员相同的方式做出反应。为了确保未来的自动驾驶汽车能够像人类驾驶员一样发挥作用,本文提出了一种车辆运动计划模型,该模型可以基于对实际信号交叉口的交通环境的评估,来表示驾驶员如何控制车辆。所提出的运动计划模型包括行人意图检测,间隙检测和车辆动态控制的功能。这三个功能是基于对从实际交通环境中收集的实际数据的分析而构造的。最后,本文通过将模型的行为与实际行人和驾驶员的行为进行比较,论证了该方法的性能。实验结果表明,我们提出的模型可以达到85%的人行横道意图识别率。此外,在交叉口的间隙接受方面,由建议的运动计划模型控制的车辆和实际的人类驱动的车辆非常相似。

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